Evaluating the Effects of Situated and Embedded Visualisation in Augmented Reality Guidance for Isolated Medical Assistance
Frederick George Vickery (ENIB, Lab-STICC\_INUIT), S\'ebastien Kubicki, (ENIB, Lab-STICC\_INUIT), Charlotte Hoareau (Lab-STICC\_INUIT), Lucas Brand, (ENIB, Lab-STICC\_INUIT), Aurelien Duval (ENIB, Lab-STICC\_INUIT), Seamus, Thierry (GHBS), Ronan Querrec (ENIB, Lab-STICC\_INUIT)

TL;DR
This study compares embedded and situated projected AR visualizations to assist novice medical operators in isolated environments, highlighting their respective advantages and limitations through experimental evaluation.
Contribution
It introduces a comparative analysis of two AR visualization methods for medical guidance in isolated settings, providing insights into their effectiveness and potential improvements.
Findings
Embedded visualization offers higher precision.
Situated projected visualization provides better contextual awareness.
Both methods have unique advantages and limitations.
Abstract
One huge advantage of Augmented Reality (AR) is its numerous possibilities of displaying information in the physical world, especially when applying Situated Analytics (SitA). AR devices and their respective interaction techniques allow for supplementary guidance to assist an operator carrying out complex procedures such as medical diagnosis and surgery, for instance. Their usage promotes user autonomy by presenting relevant information when the operator may not necessarily possess expert knowledge of every procedure and may also not have access to external help such as in a remote or isolated situation (e.g., International Space Station, middle of an ocean, desert).In this paper, we propose a comparison of two different forms of AR visualisation: An embedded visualisation and a situated projected visualisation, with the aim to assist operators with the most appropriate visualisation…
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